Key Highlights
- Over 125 million LoRaWAN devices worldwide form the backbone for AI-enabled IoT.
- AI integration spans edge devices, core networks, and application platforms.
- Physical AI use cases expand across smart cities, agriculture, industrial monitoring, and environmental protection.
Artificial intelligence is rapidly transforming the Internet of Things (IoT), shifting its foundation from simple connectivity and visibility to real-time intelligence and autonomous action.
At Mobile World Congress (MWC) Barcelona 2026, the LoRa Alliance outlined how LoRaWAN® technology is converging with AI to unlock a new era of “Physical AI”, where digital intelligence directly interacts with real-world environments.
By the end of 2025, more than 125 million LoRaWAN-connected IoT devices had been deployed globally, making it the most widely deployed LPWAN (Low Power Wide Area Network) technology. Now, LoRaWAN is evolving beyond connectivity infrastructure to become the digital nervous system that powers AI-driven insights across industries.
AI at the Edge: Smarter Devices, Faster Decisions
AI processing is increasingly happening directly within LoRaWAN-connected devices. On-device intelligence enables sensors and cameras to analyze data locally before transmitting only relevant alerts or insights, significantly reducing latency and reliance on the cloud.
For example, AI-enabled cameras can instantly detect events or count people, while vibration sensors in industrial settings analyze wear patterns to trigger predictive maintenance alerts. Companies such as Honeywell and Advantech are among those integrating AI with LoRaWAN-enabled devices to deliver actionable intelligence directly at the source.
This approach lowers bandwidth use, improves energy efficiency, and enables faster perception-to-action cycles, which are critical in large industrial and remote environments.
AI in the Core: Smarter Network Management
AI also enhances LoRaWAN core networks by helping operators monitor performance, detect anomalies, and proactively address reliability or security concerns.
By analyzing network patterns, AI systems can identify unusual traffic behavior, predict outages, and optimize performance in real time. This creates a more resilient and intelligent IoT infrastructure capable of scaling efficiently as deployments grow.
AI in the Application Layer: Turning IoT Data into Actionable Intelligence
LoRaWAN supports a wide spectrum of large-scale IoT applications, including asset tracking, smart cities, agriculture, industrial systems, and environmental monitoring. By integrating AI into these deployments, organizations can transform raw sensor data into real-time insights, improving operational efficiency and delivering more precise information on asset location, performance, and environmental conditions.
Several LoRa Alliance members are already advancing AI-driven innovation. Browan and Combain enhance indoor location tracking with AI-powered solutions, while Akenza integrates an AI chatbot into its IoT platform to provide instant, data-backed responses. Creative5, Inc. has deployed a hybrid LoRaWAN and satellite connectivity solution in Taiwan to enable real-time environmental monitoring in remote mountain forests, using AI-driven cloud analytics for wildfire and flood detection.
In agriculture, Emergent Connext’s Rip Platform combines LoRaWAN connectivity with an AI intelligence layer to automate farm operations, while inBiot’s ANNE AI assistant interprets indoor air quality data in real time. MachineQ, a Comcast company, further demonstrates the convergence of IoT and AI by translating millions of IoT data points into concise, actionable summaries, enabling faster and smarter operational decisions.
As Alper Yegin, CEO of the LoRa Alliance, notes, the combination of LoRaWAN and AI enables intelligence to move beyond the digital realm into the physical world, expanding AI’s reach while enhancing the value of every connected device.

